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Bearing fault detection and classification by wavelet-artificial neural network and wavelet-energy singular value ratio.

机译:基于小波-人工神经网络和小波能量奇异值比的轴承故障检测与分类。

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摘要

In this dissertation, Wavelet-ANN (Artificial Neural Network) and Wavelet-ESVR (Energy Singular Value Ratio) are proposed for detection and classification of faults in systems with periodical characteristics. Bearings in particular display such periodical characteristics. Bearings are one of the most critical components in rotary machinery and the majority of failures arise from defective bearings. Early warning in bearing deterioration is essential and it can prevent substantial machine downtime. In the first method an ANN is trained to diagnose bearing health by extracting information from discrete Wavelet coefficients. In the second approach, ESVRs are used to detect variations in the continuous Wavelets coefficients as symptoms of bearing health. Computer-simulated data and real bearing vibration data were then applied to perform initial testing and validation of these approaches. The test results show that the proposed methods are effectively detecting different bearing faults.
机译:本文提出了基于小波神经网络和能量奇异值比的小波神经网络,对具有周期性特征的系统进行故障检测和分类。轴承尤其表现出这种周期性特征。轴承是旋转机械中最关键的组件之一,大多数故障是由有缺陷的轴承引起的。轴承损坏的预警是必不可少的,它可以防止大量的机器停机。在第一种方法中,训练ANN通过从离散小波系数中提取信息来诊断轴承的健康状况。在第二种方法中,ESVR用于检测连续小波系数的变化作为轴承健康的症状。然后将计算机模拟数据和实际轴承振动数据应用于执行这些方法的初始测试和验证。测试结果表明,该方法能够有效地检测出不同的轴承故障。

著录项

  • 作者

    Behnam, Behroz.;

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Engineering System Science.
  • 学位 M.Sc.
  • 年度 2009
  • 页码 113 p.
  • 总页数 113
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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